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---
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slug: /en/sql-reference/functions/other-functions
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sidebar_position: 140
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sidebar_label: Other
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---
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# Other Functions
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## hostName()
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Returns the name of the host on which this function was executed. If the function executes on a remote server (distributed processing), the remote server name is returned.
If the function executes in the context of a distributed table, it generates a normal column with values relevant to each shard. Otherwise it produces a constant value.
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## getMacro {#other_functions-getMacro}
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Returns a named value from the [macros ](../../operations/server-configuration-parameters/settings.md#macros ) section of the server configuration.
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**Syntax**
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``` sql
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getMacro(name);
```
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**Arguments**
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- `name` — Macro name to retrieve from the `<macros>` section. [String ](../../sql-reference/data-types/string.md#string ).
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**Returned value**
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- Value of the specified macro.
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Type: [String ](../../sql-reference/data-types/string.md ).
**Example**
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Example `<macros>` section in the server configuration file:
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``` xml
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< macros >
< test > Value< / test >
< / macros >
```
Query:
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``` sql
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SELECT getMacro('test');
```
Result:
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``` text
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┌─getMacro('test')─┐
│ Value │
└──────────────────┘
```
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The same value can be retrieved as follows:
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``` sql
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SELECT * FROM system.macros
WHERE macro = 'test';
```
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``` text
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┌─macro─┬─substitution─┐
│ test │ Value │
└───────┴──────────────┘
```
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## FQDN
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Returns the fully qualified domain name of the ClickHouse server.
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**Syntax**
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``` sql
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fqdn();
```
This function is case-insensitive.
**Returned value**
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- String with the fully qualified domain name.
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Type: `String` .
**Example**
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``` sql
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SELECT FQDN();
```
Result:
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``` text
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┌─FQDN()──────────────────────────┐
│ clickhouse.ru-central1.internal │
└─────────────────────────────────┘
```
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## basename
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Extracts the tail of a string following its last slash or backslash. This function if often used to extract the filename from a path.
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``` sql
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basename(expr)
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```
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**Arguments**
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- `expr` — A value of type [String ](../../sql-reference/data-types/string.md ). Backslashes must be escaped.
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**Returned Value**
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A string that contains:
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- The tail of the input string after its last slash or backslash. If the input string ends with a slash or backslash (e.g. `/` or `c:\` ), the function returns an empty string.
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- The original string if there are no slashes or backslashes.
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**Example**
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Query:
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``` sql
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SELECT 'some/long/path/to/file' AS a, basename(a)
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```
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Result:
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``` text
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┌─a──────────────────────┬─basename('some\\long\\path\\to\\file')─┐
│ some\long\path\to\file │ file │
└────────────────────────┴────────────────────────────────────────┘
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```
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Query:
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``` sql
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SELECT 'some\\long\\path\\to\\file' AS a, basename(a)
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```
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Result:
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``` text
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┌─a──────────────────────┬─basename('some\\long\\path\\to\\file')─┐
│ some\long\path\to\file │ file │
└────────────────────────┴────────────────────────────────────────┘
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```
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Query:
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``` sql
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SELECT 'some-file-name' AS a, basename(a)
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```
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Result:
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``` text
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┌─a──────────────┬─basename('some-file-name')─┐
│ some-file-name │ some-file-name │
└────────────────┴────────────────────────────┘
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```
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## visibleWidth(x)
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Calculates the approximate width when outputting values to the console in text format (tab-separated).
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This function is used by the system to implement Pretty formats.
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`NULL` is represented as a string corresponding to `NULL` in `Pretty` formats.
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``` sql
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SELECT visibleWidth(NULL)
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```
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``` text
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┌─visibleWidth(NULL)─┐
│ 4 │
└────────────────────┘
```
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## toTypeName(x)
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Returns the type name of the passed argument.
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If `NULL` is passed, then the function returns type `Nullable(Nothing)` , which corresponds to ClickHouse's internal `NULL` representation.
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## blockSize() {#other_functions-blockSize}
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In ClickHouse, queries are processed in blocks (chunks).
This function returns the size (row count) of the block the function is called on.
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## byteSize
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Returns an estimation of uncompressed byte size of its arguments in memory.
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**Syntax**
```sql
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byteSize(argument [, ...])
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```
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**Arguments**
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- `argument` — Value.
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**Returned value**
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- Estimation of byte size of the arguments in memory.
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Type: [UInt64 ](../../sql-reference/data-types/int-uint.md ).
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**Examples**
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For [String ](../../sql-reference/data-types/string.md ) arguments, the function returns the string length + 9 (terminating zero + length).
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Query:
```sql
SELECT byteSize('string');
```
Result:
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```text
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┌─byteSize('string')─┐
│ 15 │
└────────────────────┘
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```
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Query:
```sql
CREATE TABLE test
(
`key` Int32,
`u8` UInt8,
`u16` UInt16,
`u32` UInt32,
`u64` UInt64,
`i8` Int8,
`i16` Int16,
`i32` Int32,
`i64` Int64,
`f32` Float32,
`f64` Float64
)
ENGINE = MergeTree
ORDER BY key;
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INSERT INTO test VALUES(1, 8, 16, 32, 64, -8, -16, -32, -64, 32.32, 64.64);
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SELECT key, byteSize(u8) AS `byteSize(UInt8)` , byteSize(u16) AS `byteSize(UInt16)` , byteSize(u32) AS `byteSize(UInt32)` , byteSize(u64) AS `byteSize(UInt64)` , byteSize(i8) AS `byteSize(Int8)` , byteSize(i16) AS `byteSize(Int16)` , byteSize(i32) AS `byteSize(Int32)` , byteSize(i64) AS `byteSize(Int64)` , byteSize(f32) AS `byteSize(Float32)` , byteSize(f64) AS `byteSize(Float64)` FROM test ORDER BY key ASC FORMAT Vertical;
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```
Result:
``` text
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Row 1:
──────
key: 1
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byteSize(UInt8): 1
byteSize(UInt16): 2
byteSize(UInt32): 4
byteSize(UInt64): 8
byteSize(Int8): 1
byteSize(Int16): 2
byteSize(Int32): 4
byteSize(Int64): 8
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byteSize(Float32): 4
byteSize(Float64): 8
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```
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If the function has multiple arguments, the function accumulates their byte sizes.
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Query:
```sql
SELECT byteSize(NULL, 1, 0.3, '');
```
Result:
```text
┌─byteSize(NULL, 1, 0.3, '')─┐
│ 19 │
└────────────────────────────┘
```
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## materialize(x)
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Turns a constant into a full column containing a single value.
Full columns and constants are represented differently in memory. Functions usually execute different code for normal and constant arguments, although the result should typically be the same. This function can be used to debug this behavior.
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## ignore(…)
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Accepts any arguments, including `NULL` and does nothing. Always returns 0.
The argument is internally still evaluated. Useful e.g. for benchmarks.
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## sleep(seconds)
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Sleeps ‘ seconds’ seconds for each data block. The sleep time can be specified as integer or as floating-point number.
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## sleepEachRow(seconds)
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Sleeps ‘ seconds’ seconds for each row. The sleep time can be specified as integer or as floating-point number.
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## currentDatabase()
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Returns the name of the current database.
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Useful in table engine parameters of `CREATE TABLE` queries where you need to specify the database.
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## currentUser() {#other_functions-currentUser}
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Returns the name of the current user. In case of a distributed query, the name of the user who initiated the query is returned.
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``` sql
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SELECT currentUser();
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```
Alias: `user()` , `USER()` .
**Returned values**
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- The name of the current user.
- In distributed queries, the login of the user who initiated the query.
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Type: `String` .
**Example**
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``` sql
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SELECT currentUser();
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```
Result:
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``` text
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┌─currentUser()─┐
│ default │
└───────────────┘
```
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## isConstant
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Returns whether the argument is a constant expression.
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A constant expression is an expression whose result is known during query analysis, i.e. before execution. For example, expressions over [literals ](../../sql-reference/syntax.md#literals ) are constant expressions.
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This function is mostly intended for development, debugging and demonstration.
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**Syntax**
``` sql
isConstant(x)
```
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**Arguments**
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- `x` — Expression to check.
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**Returned values**
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- `1` if `x` is constant.
- `0` if `x` is non-constant.
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Type: [UInt8 ](../../sql-reference/data-types/int-uint.md ).
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**Examples**
Query:
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``` sql
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SELECT isConstant(x + 1) FROM (SELECT 43 AS x)
```
Result:
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``` text
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┌─isConstant(plus(x, 1))─┐
│ 1 │
└────────────────────────┘
```
Query:
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``` sql
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WITH 3.14 AS pi SELECT isConstant(cos(pi))
```
Result:
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``` text
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┌─isConstant(cos(pi))─┐
│ 1 │
└─────────────────────┘
```
Query:
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``` sql
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SELECT isConstant(number) FROM numbers(1)
```
Result:
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``` text
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┌─isConstant(number)─┐
│ 0 │
└────────────────────┘
```
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## isFinite(x)
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Returns 1 if the Float32 or Float64 argument not infinite and not a NaN, otherwise this function returns 0.
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## isInfinite(x)
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Returns 1 if the Float32 or Float64 argument is infinite, otherwise this function returns 0. Note that 0 is returned for a NaN.
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## ifNotFinite
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Checks whether a floating point value is finite.
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**Syntax**
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``` sql
ifNotFinite(x,y)
```
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**Arguments**
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- `x` — Value to check for infinity. Type: [Float\* ](../../sql-reference/data-types/float.md ).
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- `y` — Fallback value. Type: [Float\* ](../../sql-reference/data-types/float.md ).
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**Returned value**
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- `x` if `x` is finite.
- `y` if `x` is not finite.
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**Example**
Query:
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SELECT 1/0 as infimum, ifNotFinite(infimum,42)
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Result:
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┌─infimum─┬─ifNotFinite(divide(1, 0), 42)─┐
│ inf │ 42 │
└─────────┴───────────────────────────────┘
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You can get similar result by using the [ternary operator ](../../sql-reference/functions/conditional-functions.md#ternary-operator ): `isFinite(x) ? x : y` .
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## isNaN(x)
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Returns 1 if the Float32 and Float64 argument is NaN, otherwise this function 0.
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## hasColumnInTable(\[‘ hostname’ \[, ‘ username’ \[, ‘ password’ \]\],\] ‘ database’ , ‘ table’ , ‘ column’ )
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Given the database name, the table name, and the column name as constant strings, returns 1 if the given column exists, otherwise 0. If parameter `hostname` is given, the check is performed on a remote server.
If the table does not exist, an exception is thrown.
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For elements in a nested data structure, the function checks for the existence of a column. For the nested data structure itself, the function returns 0.
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## bar
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Builds a bar chart.
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`bar(x, min, max, width)` draws a band with width proportional to `(x - min)` and equal to `width` characters when `x = max` .
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**Arguments**
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- `x` — Size to display.
- `min, max` — Integer constants. The value must fit in `Int64` .
- `width` — Constant, positive integer, can be fractional.
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The band is drawn with accuracy to one eighth of a symbol.
Example:
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``` sql
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SELECT
toHour(EventTime) AS h,
count() AS c,
bar(c, 0, 600000, 20) AS bar
FROM test.hits
GROUP BY h
ORDER BY h ASC
```
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``` text
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┌──h─┬──────c─┬─bar────────────────┐
│ 0 │ 292907 │ █████████▋ │
│ 1 │ 180563 │ ██████ │
│ 2 │ 114861 │ ███▋ │
│ 3 │ 85069 │ ██▋ │
│ 4 │ 68543 │ ██▎ │
│ 5 │ 78116 │ ██▌ │
│ 6 │ 113474 │ ███▋ │
│ 7 │ 170678 │ █████▋ │
│ 8 │ 278380 │ █████████▎ │
│ 9 │ 391053 │ █████████████ │
│ 10 │ 457681 │ ███████████████▎ │
│ 11 │ 493667 │ ████████████████▍ │
│ 12 │ 509641 │ ████████████████▊ │
│ 13 │ 522947 │ █████████████████▍ │
│ 14 │ 539954 │ █████████████████▊ │
│ 15 │ 528460 │ █████████████████▌ │
│ 16 │ 539201 │ █████████████████▊ │
│ 17 │ 523539 │ █████████████████▍ │
│ 18 │ 506467 │ ████████████████▊ │
│ 19 │ 520915 │ █████████████████▎ │
│ 20 │ 521665 │ █████████████████▍ │
│ 21 │ 542078 │ ██████████████████ │
│ 22 │ 493642 │ ████████████████▍ │
│ 23 │ 400397 │ █████████████▎ │
└────┴────────┴────────────────────┘
```
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## transform
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Transforms a value according to the explicitly defined mapping of some elements to other ones.
There are two variations of this function:
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### transform(x, array_from, array_to, default)
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`x` – What to transform.
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`array_from` – Constant array of values to convert.
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`array_to` – Constant array of values to convert the values in ‘ from’ to.
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`default` – Which value to use if ‘ x’ is not equal to any of the values in ‘ from’ .
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`array_from` and `array_to` must have equally many elements.
Signature:
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For `x` equal to one of the elements in `array_from` , the function returns the corresponding element in `array_to` , i.e. the one at the same array index. Otherwise, it returns `default` . If multiple matching elements exist `array_from` , an arbitrary corresponding element from `array_to` is returned.
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`transform(T, Array(T), Array(U), U) -> U`
`T` and `U` can be numeric, string, or Date or DateTime types.
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The same letter (T or U) means that types must be mutually compatible and not necessarily equal.
For example, the first argument could have type `Int64` , while the second argument could have type `Array(UInt16)` .
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Example:
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``` sql
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SELECT
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transform(SearchEngineID, [2, 3], ['Yandex', 'Google'], 'Other') AS title,
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count() AS c
FROM test.hits
WHERE SearchEngineID != 0
GROUP BY title
ORDER BY c DESC
```
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``` text
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┌─title─────┬──────c─┐
│ Yandex │ 498635 │
│ Google │ 229872 │
│ Other │ 104472 │
└───────────┴────────┘
```
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### transform(x, array_from, array_to)
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Similar to the other variation but has no ‘ default’ argument. In case no match can be found, `x` is returned.
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Example:
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``` sql
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SELECT
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transform(domain(Referer), ['yandex.ru', 'google.ru', 'vkontakte.ru'], ['www.yandex', 'example.com', 'vk.com']) AS s,
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count() AS c
FROM test.hits
GROUP BY domain(Referer)
ORDER BY count() DESC
LIMIT 10
```
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``` text
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┌─s──────────────┬───────c─┐
│ │ 2906259 │
│ www.yandex │ 867767 │
│ ███████.ru │ 313599 │
│ mail.yandex.ru │ 107147 │
│ ██████.ru │ 100355 │
│ █████████.ru │ 65040 │
│ news.yandex.ru │ 64515 │
│ ██████.net │ 59141 │
│ example.com │ 57316 │
└────────────────┴─────────┘
```
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## formatReadableDecimalSize(x)
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Given a size (number of bytes), this function returns a readable, rounded size with suffix (KB, MB, etc.) as string.
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Example:
``` sql
SELECT
arrayJoin([1, 1024, 1024*1024, 192851925]) AS filesize_bytes,
formatReadableDecimalSize(filesize_bytes) AS filesize
```
``` text
┌─filesize_bytes─┬─filesize───┐
│ 1 │ 1.00 B │
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│ 1024 │ 1.02 KB │
│ 1048576 │ 1.05 MB │
│ 192851925 │ 192.85 MB │
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└────────────────┴────────────┘
```
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## formatReadableSize(x)
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Given a size (number of bytes), this function returns a readable, rounded size with suffix (KiB, MiB, etc.) as string.
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Example:
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``` sql
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SELECT
arrayJoin([1, 1024, 1024*1024, 192851925]) AS filesize_bytes,
formatReadableSize(filesize_bytes) AS filesize
```
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``` text
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┌─filesize_bytes─┬─filesize───┐
│ 1 │ 1.00 B │
│ 1024 │ 1.00 KiB │
│ 1048576 │ 1.00 MiB │
│ 192851925 │ 183.92 MiB │
└────────────────┴────────────┘
```
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## formatReadableQuantity(x)
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Given a number, this function returns a rounded number with suffix (thousand, million, billion, etc.) as string.
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Example:
``` sql
SELECT
arrayJoin([1024, 1234 * 1000, (4567 * 1000) * 1000, 98765432101234]) AS number,
formatReadableQuantity(number) AS number_for_humans
```
``` text
┌─────────number─┬─number_for_humans─┐
│ 1024 │ 1.02 thousand │
│ 1234000 │ 1.23 million │
│ 4567000000 │ 4.57 billion │
│ 98765432101234 │ 98.77 trillion │
└────────────────┴───────────────────┘
```
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## formatReadableTimeDelta
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Given a time interval (delta) in seconds, this function returns a time delta with year/month/day/hour/minute/second as string.
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**Syntax**
``` sql
formatReadableTimeDelta(column[, maximum_unit])
```
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**Arguments**
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- `column` — A column with a numeric time delta.
- `maximum_unit` — Optional. Maximum unit to show. Acceptable values `seconds` , `minutes` , `hours` , `days` , `months` , `years` .
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Example:
``` sql
SELECT
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arrayJoin([100, 12345, 432546534]) AS elapsed,
formatReadableTimeDelta(elapsed) AS time_delta
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```
``` text
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┌────elapsed─┬─time_delta ─────────────────────────────────────────────────────┐
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│ 100 │ 1 minute and 40 seconds │
│ 12345 │ 3 hours, 25 minutes and 45 seconds │
│ 432546534 │ 13 years, 8 months, 17 days, 7 hours, 48 minutes and 54 seconds │
└────────────┴─────────────────────────────────────────────────────────────────┘
```
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``` sql
SELECT
arrayJoin([100, 12345, 432546534]) AS elapsed,
formatReadableTimeDelta(elapsed, 'minutes') AS time_delta
```
``` text
┌────elapsed─┬─time_delta ─────────────────────────────────────────────────────┐
│ 100 │ 1 minute and 40 seconds │
│ 12345 │ 205 minutes and 45 seconds │
│ 432546534 │ 7209108 minutes and 54 seconds │
└────────────┴─────────────────────────────────────────────────────────────────┘
```
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## parseTimeDelta
Parse a sequence of numbers followed by something resembling a time unit.
**Syntax**
```sql
parseTimeDelta(timestr)
```
**Arguments**
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- `timestr` — A sequence of numbers followed by something resembling a time unit.
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**Returned value**
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- A floating-point number with the number of seconds.
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**Example**
```sql
SELECT parseTimeDelta('11s+22min')
```
```text
┌─parseTimeDelta('11s+22min')─┐
│ 1331 │
└─────────────────────────────┘
```
```sql
SELECT parseTimeDelta('1yr2mo')
```
```text
┌─parseTimeDelta('1yr2mo')─┐
│ 36806400 │
└──────────────────────────┘
```
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## least(a, b)
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Returns the smaller value of a and b.
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## greatest(a, b)
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Returns the larger value of a and b.
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## uptime()
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Returns the server’ s uptime in seconds.
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If executed in the context of a distributed table, this function generates a normal column with values relevant to each shard. Otherwise it produces a constant value.
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## version()
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Returns the server version as a string.
If executed in the context of a distributed table, this function generates a normal column with values relevant to each shard. Otherwise it produces a constant value.
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## buildId()
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Returns the build ID generated by a compiler for the running ClickHouse server binary.
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If executed in the context of a distributed table, this function generates a normal column with values relevant to each shard. Otherwise it produces a constant value.
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## blockNumber()
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Returns the sequence number of the data block where the row is located.
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## rowNumberInBlock() {#other_functions-rowNumberInBlock}
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Returns the ordinal number of the row in the data block. Different data blocks are always recalculated.
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## rowNumberInAllBlocks()
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Returns the ordinal number of the row in the data block. This function only considers the affected data blocks.
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## neighbor
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The window function that provides access to a row at a specified offset before or after the current row of a given column.
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**Syntax**
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``` sql
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neighbor(column, offset[, default_value])
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```
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The result of the function depends on the affected data blocks and the order of data in the block.
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:::note
Only returns neighbor inside the currently processed data block.
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:::
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The order of rows during calculation of `neighbor()` can differ from the order of rows returned to the user.
To prevent that you can create a subquery with [ORDER BY ](../../sql-reference/statements/select/order-by.md ) and call the function from outside the subquery.
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**Arguments**
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- `column` — A column name or scalar expression.
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- `offset` — The number of rows to look before or ahead of the current row in `column` . [Int64 ](../../sql-reference/data-types/int-uint.md ).
- `default_value` — Optional. The returned value if offset is beyond the block boundaries. Type of data blocks affected.
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**Returned values**
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- Value of `column` with `offset` distance from current row, if `offset` is not outside the block boundaries.
- The default value of `column` or `default_value` (if given), if `offset` is outside the block boundaries.
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Type: type of data blocks affected or default value type.
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**Example**
Query:
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``` sql
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SELECT number, neighbor(number, 2) FROM system.numbers LIMIT 10;
```
Result:
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``` text
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┌─number─┬─neighbor(number, 2)─┐
│ 0 │ 2 │
│ 1 │ 3 │
│ 2 │ 4 │
│ 3 │ 5 │
│ 4 │ 6 │
│ 5 │ 7 │
│ 6 │ 8 │
│ 7 │ 9 │
│ 8 │ 0 │
│ 9 │ 0 │
└────────┴─────────────────────┘
```
Query:
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``` sql
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SELECT number, neighbor(number, 2, 999) FROM system.numbers LIMIT 10;
```
Result:
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``` text
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┌─number─┬─neighbor(number, 2, 999)─┐
│ 0 │ 2 │
│ 1 │ 3 │
│ 2 │ 4 │
│ 3 │ 5 │
│ 4 │ 6 │
│ 5 │ 7 │
│ 6 │ 8 │
│ 7 │ 9 │
│ 8 │ 999 │
│ 9 │ 999 │
└────────┴──────────────────────────┘
```
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This function can be used to compute year-over-year metric value:
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Query:
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``` sql
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WITH toDate('2018-01-01') AS start_date
SELECT
toStartOfMonth(start_date + (number * 32)) AS month,
toInt32(month) % 100 AS money,
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neighbor(money, -12) AS prev_year,
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round(prev_year / money, 2) AS year_over_year
FROM numbers(16)
```
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Result:
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``` text
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┌──────month─┬─money─┬─prev_year─┬─year_over_year─┐
│ 2018-01-01 │ 32 │ 0 │ 0 │
│ 2018-02-01 │ 63 │ 0 │ 0 │
│ 2018-03-01 │ 91 │ 0 │ 0 │
│ 2018-04-01 │ 22 │ 0 │ 0 │
│ 2018-05-01 │ 52 │ 0 │ 0 │
│ 2018-06-01 │ 83 │ 0 │ 0 │
│ 2018-07-01 │ 13 │ 0 │ 0 │
│ 2018-08-01 │ 44 │ 0 │ 0 │
│ 2018-09-01 │ 75 │ 0 │ 0 │
│ 2018-10-01 │ 5 │ 0 │ 0 │
│ 2018-11-01 │ 36 │ 0 │ 0 │
│ 2018-12-01 │ 66 │ 0 │ 0 │
│ 2019-01-01 │ 97 │ 32 │ 0.33 │
│ 2019-02-01 │ 28 │ 63 │ 2.25 │
│ 2019-03-01 │ 56 │ 91 │ 1.62 │
│ 2019-04-01 │ 87 │ 22 │ 0.25 │
└────────────┴───────┴───────────┴────────────────┘
```
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## runningDifference(x) {#other_functions-runningDifference}
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Calculates the difference between two consecutive row values in the data block.
Returns 0 for the first row, and for subsequent rows the difference to the previous row.
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:::note
Only returns differences inside the currently processed data block.
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:::
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The result of the function depends on the affected data blocks and the order of data in the block.
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The order of rows during calculation of `runningDifference()` can differ from the order of rows returned to the user.
To prevent that you can create a subquery with [ORDER BY ](../../sql-reference/statements/select/order-by.md ) and call the function from outside the subquery.
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Example:
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``` sql
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SELECT
EventID,
EventTime,
runningDifference(EventTime) AS delta
FROM
(
SELECT
EventID,
EventTime
FROM events
WHERE EventDate = '2016-11-24'
ORDER BY EventTime ASC
LIMIT 5
)
```
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``` text
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┌─EventID─┬───────────EventTime─┬─delta─┐
│ 1106 │ 2016-11-24 00:00:04 │ 0 │
│ 1107 │ 2016-11-24 00:00:05 │ 1 │
│ 1108 │ 2016-11-24 00:00:05 │ 0 │
│ 1109 │ 2016-11-24 00:00:09 │ 4 │
│ 1110 │ 2016-11-24 00:00:10 │ 1 │
└─────────┴─────────────────────┴───────┘
```
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Please note that the block size affects the result. The internal state of `runningDifference` state is reset for each new block.
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``` sql
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SELECT
number,
runningDifference(number + 1) AS diff
FROM numbers(100000)
WHERE diff != 1
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```
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``` text
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┌─number─┬─diff─┐
│ 0 │ 0 │
└────────┴──────┘
┌─number─┬─diff─┐
│ 65536 │ 0 │
└────────┴──────┘
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```
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``` sql
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set max_block_size=100000 -- default value is 65536!
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SELECT
number,
runningDifference(number + 1) AS diff
FROM numbers(100000)
WHERE diff != 1
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```
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``` text
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┌─number─┬─diff─┐
│ 0 │ 0 │
└────────┴──────┘
```
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## runningDifferenceStartingWithFirstValue
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Same as [runningDifference ](./other-functions.md#other_functions-runningdifference ), but returns the value of the first row as the value on the first row.
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## runningConcurrency
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Calculates the number of concurrent events.
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Each event has a start time and an end time. The start time is included in the event, while the end time is excluded. Columns with a start time and an end time must be of the same data type.
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The function calculates the total number of active (concurrent) events for each event start time.
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:::tip
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Events must be ordered by the start time in ascending order. If this requirement is violated the function raises an exception. Every data block is processed separately. If events from different data blocks overlap then they can not be processed correctly.
:::
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**Syntax**
``` sql
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runningConcurrency(start, end)
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```
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**Arguments**
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- `start` — A column with the start time of events. [Date ](../../sql-reference/data-types/date.md ), [DateTime ](../../sql-reference/data-types/datetime.md ), or [DateTime64 ](../../sql-reference/data-types/datetime64.md ).
- `end` — A column with the end time of events. [Date ](../../sql-reference/data-types/date.md ), [DateTime ](../../sql-reference/data-types/datetime.md ), or [DateTime64 ](../../sql-reference/data-types/datetime64.md ).
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**Returned values**
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- The number of concurrent events at each event start time.
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Type: [UInt32 ](../../sql-reference/data-types/int-uint.md )
**Example**
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Consider the table:
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``` text
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┌──────start─┬────────end─┐
│ 2021-03-03 │ 2021-03-11 │
│ 2021-03-06 │ 2021-03-12 │
│ 2021-03-07 │ 2021-03-08 │
│ 2021-03-11 │ 2021-03-12 │
└────────────┴────────────┘
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```
Query:
``` sql
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SELECT start, runningConcurrency(start, end) FROM example_table;
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```
Result:
``` text
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┌──────start─┬─runningConcurrency(start, end)─┐
│ 2021-03-03 │ 1 │
│ 2021-03-06 │ 2 │
│ 2021-03-07 │ 3 │
│ 2021-03-11 │ 2 │
└────────────┴────────────────────────────────┘
2020-12-21 03:08:37 +00:00
```
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## MACNumToString(num)
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Interprets a UInt64 number as a MAC address in big endian format. Returns the corresponding MAC address in format AA:BB:CC:DD:EE:FF (colon-separated numbers in hexadecimal form) as string.
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## MACStringToNum(s)
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The inverse function of MACNumToString. If the MAC address has an invalid format, it returns 0.
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## MACStringToOUI(s)
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Given a MAC address in format AA:BB:CC:DD:EE:FF (colon-separated numbers in hexadecimal form), returns the first three octets as a UInt64 number. If the MAC address has an invalid format, it returns 0.
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## getSizeOfEnumType
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Returns the number of fields in [Enum ](../../sql-reference/data-types/enum.md ).
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An exception is thrown if the type is not `Enum` .
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``` sql
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getSizeOfEnumType(value)
```
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**Arguments:**
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- `value` — Value of type `Enum` .
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**Returned values**
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- The number of fields with `Enum` input values.
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**Example**
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``` sql
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SELECT getSizeOfEnumType( CAST('a' AS Enum8('a' = 1, 'b' = 2) ) ) AS x
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```
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``` text
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┌─x─┐
│ 2 │
└───┘
```
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## blockSerializedSize
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Returns the size on disk without considering compression.
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``` sql
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blockSerializedSize(value[, value[, ...]])
```
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**Arguments**
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- `value` — Any value.
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**Returned values**
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- The number of bytes that will be written to disk for block of values without compression.
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**Example**
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Query:
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``` sql
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SELECT blockSerializedSize(maxState(1)) as x
```
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Result:
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``` text
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┌─x─┐
│ 2 │
└───┘
```
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## toColumnTypeName
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Returns the internal name of the data type that represents the value.
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``` sql
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toColumnTypeName(value)
```
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**Arguments:**
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- `value` — Any type of value.
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**Returned values**
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- The internal data type name used to represent `value` .
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**Example**
Difference between `toTypeName ' and ' toColumnTypeName` :
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``` sql
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SELECT toTypeName(CAST('2018-01-01 01:02:03' AS DateTime))
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```
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Result:
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``` text
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┌─toTypeName(CAST('2018-01-01 01:02:03', 'DateTime'))─┐
│ DateTime │
└─────────────────────────────────────────────────────┘
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```
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Query:
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``` sql
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SELECT toColumnTypeName(CAST('2018-01-01 01:02:03' AS DateTime))
```
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Result:
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``` text
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┌─toColumnTypeName(CAST('2018-01-01 01:02:03', 'DateTime'))─┐
│ Const(UInt32) │
└───────────────────────────────────────────────────────────┘
```
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The example shows that the `DateTime` data type is internally stored as `Const(UInt32)` .
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## dumpColumnStructure
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Outputs a detailed description of data structures in RAM
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``` sql
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dumpColumnStructure(value)
```
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**Arguments:**
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- `value` — Any type of value.
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**Returned values**
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- A description of the column structure used for representing `value` .
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**Example**
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``` sql
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SELECT dumpColumnStructure(CAST('2018-01-01 01:02:03', 'DateTime'))
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```
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``` text
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┌─dumpColumnStructure(CAST('2018-01-01 01:02:03', 'DateTime'))─┐
│ DateTime, Const(size = 1, UInt32(size = 1)) │
└──────────────────────────────────────────────────────────────┘
```
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## defaultValueOfArgumentType
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Returns the default value for the given data type.
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Does not include default values for custom columns set by the user.
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``` sql
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defaultValueOfArgumentType(expression)
```
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**Arguments:**
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- `expression` — Arbitrary type of value or an expression that results in a value of an arbitrary type.
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**Returned values**
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- `0` for numbers.
- Empty string for strings.
- `ᴺᵁᴸᴸ` for [Nullable ](../../sql-reference/data-types/nullable.md ).
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**Example**
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Query:
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``` sql
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SELECT defaultValueOfArgumentType( CAST(1 AS Int8) )
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```
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Result:
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``` text
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┌─defaultValueOfArgumentType(CAST(1, 'Int8'))─┐
│ 0 │
└─────────────────────────────────────────────┘
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```
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Query:
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``` sql
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SELECT defaultValueOfArgumentType( CAST(1 AS Nullable(Int8) ) )
```
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Result:
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``` text
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┌─defaultValueOfArgumentType(CAST(1, 'Nullable(Int8)'))─┐
│ ᴺᵁᴸᴸ │
└───────────────────────────────────────────────────────┘
```
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## defaultValueOfTypeName
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Returns the default value for the given type name.
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Does not include default values for custom columns set by the user.
``` sql
defaultValueOfTypeName(type)
```
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**Arguments:**
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- `type` — A string representing a type name.
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**Returned values**
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- `0` for numbers.
- Empty string for strings.
- `ᴺᵁᴸᴸ` for [Nullable ](../../sql-reference/data-types/nullable.md ).
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**Example**
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Query:
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``` sql
SELECT defaultValueOfTypeName('Int8')
```
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Result:
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``` text
┌─defaultValueOfTypeName('Int8')─┐
│ 0 │
└────────────────────────────────┘
```
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Query:
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``` sql
SELECT defaultValueOfTypeName('Nullable(Int8)')
```
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Result:
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``` text
┌─defaultValueOfTypeName('Nullable(Int8)')─┐
│ ᴺᵁᴸᴸ │
└──────────────────────────────────────────┘
```
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## indexHint
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This function is intended for debugging and introspection. It ignores its argument and always returns 1. The arguments are not evaluated.
But during index analysis, the argument of this function is assumed to be not wrapped in `indexHint` . This allows to select data in index ranges by the corresponding condition but without further filtering by this condition. The index in ClickHouse is sparse and using `indexHint` will yield more data than specifying the same condition directly.
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**Syntax**
```sql
SELECT * FROM table WHERE indexHint(< expression > )
```
**Returned value**
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Type: [Uint8 ](https://clickhouse.com/docs/en/data_types/int_uint/#diapazony-uint ).
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**Example**
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Here is the example of test data from the table [ontime ](../../getting-started/example-datasets/ontime.md ).
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Table:
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```sql
SELECT count() FROM ontime
```
```text
┌─count()─┐
│ 4276457 │
└─────────┘
```
The table has indexes on the fields `(FlightDate, (Year, FlightDate))` .
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Create a query which does not use the index:
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```sql
SELECT FlightDate AS k, count() FROM ontime GROUP BY k ORDER BY k
```
ClickHouse processed the entire table (`Processed 4.28 million rows`).
Result:
```text
┌──────────k─┬─count()─┐
│ 2017-01-01 │ 13970 │
│ 2017-01-02 │ 15882 │
........................
│ 2017-09-28 │ 16411 │
│ 2017-09-29 │ 16384 │
│ 2017-09-30 │ 12520 │
└────────────┴─────────┘
```
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To apply the index, select a specific date:
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```sql
SELECT FlightDate AS k, count() FROM ontime WHERE k = '2017-09-15' GROUP BY k ORDER BY k
```
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ClickHouse now uses the index to process a significantly smaller number of rows (`Processed 32.74 thousand rows`).
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Result:
```text
┌──────────k─┬─count()─┐
│ 2017-09-15 │ 16428 │
└────────────┴─────────┘
```
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Now wrap the expression `k = '2017-09-15'` in function `indexHint` :
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Query:
```sql
SELECT
FlightDate AS k,
count()
FROM ontime
WHERE indexHint(k = '2017-09-15')
GROUP BY k
ORDER BY k ASC
```
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ClickHouse used the index the same way as previously (`Processed 32.74 thousand rows`).
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The expression `k = '2017-09-15'` was not used when generating the result.
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In example, the `indexHint` function allows to see adjacent dates.
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Result:
```text
┌──────────k─┬─count()─┐
│ 2017-09-14 │ 7071 │
│ 2017-09-15 │ 16428 │
│ 2017-09-16 │ 1077 │
│ 2017-09-30 │ 8167 │
└────────────┴─────────┘
```
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## replicate
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Creates an array with a single value.
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Used for the internal implementation of [arrayJoin ](../../sql-reference/functions/array-join.md#functions_arrayjoin ).
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``` sql
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SELECT replicate(x, arr);
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```
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**Arguments:**
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- `arr` — An array.
- `x` — The value to fill the result array with.
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**Returned value**
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An array of the lame length as `arr` filled with value `x` .
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Type: `Array` .
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**Example**
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Query:
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``` sql
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SELECT replicate(1, ['a', 'b', 'c'])
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```
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Result:
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``` text
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┌─replicate(1, ['a', 'b', 'c'])─┐
│ [1,1,1] │
└───────────────────────────────┘
```
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## filesystemAvailable
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Returns the amount of free space in the filesystem hosting the database persistence. The returned value is always smaller than total free space ([filesystemFree](#filesystemfree)) because some space is reserved for the operating system.
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**Syntax**
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``` sql
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filesystemAvailable()
```
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**Returned value**
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- The amount of remaining space available in bytes.
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Type: [UInt64 ](../../sql-reference/data-types/int-uint.md ).
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**Example**
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Query:
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``` sql
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SELECT formatReadableSize(filesystemAvailable()) AS "Available space";
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```
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Result:
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``` text
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┌─Available space─┐
│ 30.75 GiB │
└─────────────────┘
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```
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## filesystemFree
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Returns the total amount of the free space on the filesystem hosting the database persistence. See also `filesystemAvailable`
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**Syntax**
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``` sql
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filesystemFree()
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```
**Returned value**
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- The amount of free space in bytes.
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Type: [UInt64 ](../../sql-reference/data-types/int-uint.md ).
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**Example**
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Query:
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``` sql
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SELECT formatReadableSize(filesystemFree()) AS "Free space";
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```
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Result:
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``` text
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┌─Free space─┐
│ 32.39 GiB │
└────────────┘
2019-07-18 11:04:45 +00:00
```
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## filesystemCapacity
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Returns the capacity of the filesystem in bytes. Needs the [path ](../../operations/server-configuration-parameters/settings.md#server_configuration_parameters-path ) to the data directory to be configured.
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**Syntax**
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``` sql
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filesystemCapacity()
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```
**Returned value**
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- Capacity of the filesystem in bytes.
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Type: [UInt64 ](../../sql-reference/data-types/int-uint.md ).
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**Example**
Query:
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``` sql
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SELECT formatReadableSize(filesystemCapacity()) AS "Capacity";
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```
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Result:
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``` text
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┌─Capacity──┐
│ 39.32 GiB │
└───────────┘
2019-10-07 19:32:18 +00:00
```
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## initializeAggregation
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Calculates the result of an aggregate function based on a single value. This function can be used to initialize aggregate functions with combinator [-State ](../../sql-reference/aggregate-functions/combinators.md#agg-functions-combinator-state ). You can create states of aggregate functions and insert them to columns of type [AggregateFunction ](../../sql-reference/data-types/aggregatefunction.md#data-type-aggregatefunction ) or use initialized aggregates as default values.
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**Syntax**
``` sql
initializeAggregation (aggregate_function, arg1, arg2, ..., argN)
```
**Arguments**
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- `aggregate_function` — Name of the aggregation function to initialize. [String ](../../sql-reference/data-types/string.md ).
- `arg` — Arguments of aggregate function.
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**Returned value(s)**
- Result of aggregation for every row passed to the function.
The return type is the same as the return type of function, that `initializeAgregation` takes as first argument.
**Example**
Query:
```sql
SELECT uniqMerge(state) FROM (SELECT initializeAggregation('uniqState', number % 3) AS state FROM numbers(10000));
```
Result:
```text
┌─uniqMerge(state)─┐
│ 3 │
└──────────────────┘
```
Query:
```sql
SELECT finalizeAggregation(state), toTypeName(state) FROM (SELECT initializeAggregation('sumState', number % 3) AS state FROM numbers(5));
```
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Result:
```text
┌─finalizeAggregation(state)─┬─toTypeName(state)─────────────┐
│ 0 │ AggregateFunction(sum, UInt8) │
│ 1 │ AggregateFunction(sum, UInt8) │
│ 2 │ AggregateFunction(sum, UInt8) │
│ 0 │ AggregateFunction(sum, UInt8) │
│ 1 │ AggregateFunction(sum, UInt8) │
└────────────────────────────┴───────────────────────────────┘
```
Example with `AggregatingMergeTree` table engine and `AggregateFunction` column:
```sql
CREATE TABLE metrics
(
key UInt64,
value AggregateFunction(sum, UInt64) DEFAULT initializeAggregation('sumState', toUInt64(0))
)
ENGINE = AggregatingMergeTree
ORDER BY key
```
```sql
INSERT INTO metrics VALUES (0, initializeAggregation('sumState', toUInt64(42)))
```
**See Also**
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- [arrayReduce ](../../sql-reference/functions/array-functions.md#arrayreduce )
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## finalizeAggregation
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Given a state of aggregate function, this function returns the result of aggregation (or finalized state when using a [-State ](../../sql-reference/aggregate-functions/combinators.md#agg-functions-combinator-state ) combinator).
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**Syntax**
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``` sql
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finalizeAggregation(state)
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```
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**Arguments**
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- `state` — State of aggregation. [AggregateFunction ](../../sql-reference/data-types/aggregatefunction.md#data-type-aggregatefunction ).
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**Returned value(s)**
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- Value/values that was aggregated.
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Type: Value of any types that was aggregated.
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**Examples**
Query:
```sql
SELECT finalizeAggregation(( SELECT countState(number) FROM numbers(10)));
```
Result:
```text
┌─finalizeAggregation(_subquery16)─┐
│ 10 │
└──────────────────────────────────┘
```
Query:
```sql
SELECT finalizeAggregation(( SELECT sumState(number) FROM numbers(10)));
```
Result:
```text
┌─finalizeAggregation(_subquery20)─┐
│ 45 │
└──────────────────────────────────┘
```
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Note that `NULL` values are ignored.
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Query:
```sql
SELECT finalizeAggregation(arrayReduce('anyState', [NULL, 2, 3]));
```
Result:
```text
┌─finalizeAggregation(arrayReduce('anyState', [NULL, 2, 3]))─┐
│ 2 │
└────────────────────────────────────────────────────────────┘
```
Combined example:
Query:
```sql
WITH initializeAggregation('sumState', number) AS one_row_sum_state
SELECT
number,
finalizeAggregation(one_row_sum_state) AS one_row_sum,
runningAccumulate(one_row_sum_state) AS cumulative_sum
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FROM numbers(10);
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```
Result:
```text
┌─number─┬─one_row_sum─┬─cumulative_sum─┐
│ 0 │ 0 │ 0 │
│ 1 │ 1 │ 1 │
│ 2 │ 2 │ 3 │
│ 3 │ 3 │ 6 │
│ 4 │ 4 │ 10 │
│ 5 │ 5 │ 15 │
│ 6 │ 6 │ 21 │
│ 7 │ 7 │ 28 │
│ 8 │ 8 │ 36 │
│ 9 │ 9 │ 45 │
└────────┴─────────────┴────────────────┘
```
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**See Also**
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- [arrayReduce ](../../sql-reference/functions/array-functions.md#arrayreduce )
- [initializeAggregation ](#initializeaggregation )
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## runningAccumulate
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Accumulates the states of an aggregate function for each row of a data block.
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:::note
The state is reset for each new block of data.
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:::
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**Syntax**
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``` sql
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runningAccumulate(agg_state[, grouping]);
```
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**Arguments**
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- `agg_state` — State of the aggregate function. [AggregateFunction ](../../sql-reference/data-types/aggregatefunction.md#data-type-aggregatefunction ).
- `grouping` — Grouping key. Optional. The state of the function is reset if the `grouping` value is changed. It can be any of the [supported data types ](../../sql-reference/data-types/index.md ) for which the equality operator is defined.
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**Returned value**
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- Each resulting row contains a result of the aggregate function, accumulated for all the input rows from 0 to the current position. `runningAccumulate` resets states for each new data block or when the `grouping` value changes.
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Type depends on the aggregate function used.
**Examples**
Consider how you can use `runningAccumulate` to find the cumulative sum of numbers without and with grouping.
Query:
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``` sql
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SELECT k, runningAccumulate(sum_k) AS res FROM (SELECT number as k, sumState(k) AS sum_k FROM numbers(10) GROUP BY k ORDER BY k);
```
Result:
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``` text
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┌─k─┬─res─┐
│ 0 │ 0 │
│ 1 │ 1 │
│ 2 │ 3 │
│ 3 │ 6 │
│ 4 │ 10 │
│ 5 │ 15 │
│ 6 │ 21 │
│ 7 │ 28 │
│ 8 │ 36 │
│ 9 │ 45 │
└───┴─────┘
```
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The subquery generates `sumState` for every number from `0` to `9` . `sumState` returns the state of the [sum ](../../sql-reference/aggregate-functions/reference/sum.md ) function that contains the sum of a single number.
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The whole query does the following:
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1. For the first row, `runningAccumulate` takes `sumState(0)` and returns `0` .
2. For the second row, the function merges `sumState(0)` and `sumState(1)` resulting in `sumState(0 + 1)` , and returns `1` as a result.
3. For the third row, the function merges `sumState(0 + 1)` and `sumState(2)` resulting in `sumState(0 + 1 + 2)` , and returns `3` as a result.
4. The actions are repeated until the block ends.
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The following example shows the `groupping` parameter usage:
Query:
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``` sql
SELECT
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grouping,
item,
runningAccumulate(state, grouping) AS res
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FROM
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(
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SELECT
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toInt8(number / 4) AS grouping,
number AS item,
sumState(number) AS state
FROM numbers(15)
GROUP BY item
ORDER BY item ASC
);
```
Result:
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``` text
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┌─grouping─┬─item─┬─res─┐
│ 0 │ 0 │ 0 │
│ 0 │ 1 │ 1 │
│ 0 │ 2 │ 3 │
│ 0 │ 3 │ 6 │
│ 1 │ 4 │ 4 │
│ 1 │ 5 │ 9 │
│ 1 │ 6 │ 15 │
│ 1 │ 7 │ 22 │
│ 2 │ 8 │ 8 │
│ 2 │ 9 │ 17 │
│ 2 │ 10 │ 27 │
│ 2 │ 11 │ 38 │
│ 3 │ 12 │ 12 │
│ 3 │ 13 │ 25 │
│ 3 │ 14 │ 39 │
└──────────┴──────┴─────┘
```
As you can see, `runningAccumulate` merges states for each group of rows separately.
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## joinGet
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The function lets you extract data from the table the same way as from a [dictionary ](../../sql-reference/dictionaries/index.md ).
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Gets the data from [Join ](../../engines/table-engines/special/join.md#creating-a-table ) tables using the specified join key.
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Only supports tables created with the `ENGINE = Join(ANY, LEFT, <join_keys>)` statement.
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**Syntax**
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``` sql
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joinGet(join_storage_table_name, `value_column` , join_keys)
```
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**Arguments**
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- `join_storage_table_name` — an [identifier ](../../sql-reference/syntax.md#syntax-identifiers ) indicating where the search is performed. The identifier is searched in the default database (see setting `default_database` in the config file). To override the default database, use `USE db_name` or specify the database and the table through the separator `db_name.db_table` as in the example.
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- `value_column` — name of the column of the table that contains required data.
- `join_keys` — list of keys.
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**Returned value**
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Returns a list of values corresponded to list of keys.
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If certain does not exist in source table then `0` or `null` will be returned based on [join_use_nulls ](../../operations/settings/settings.md#join_use_nulls ) setting.
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More info about `join_use_nulls` in [Join operation ](../../engines/table-engines/special/join.md ).
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**Example**
Input table:
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``` sql
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CREATE DATABASE db_test
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CREATE TABLE db_test.id_val(`id` UInt32, `val` UInt32) ENGINE = Join(ANY, LEFT, id) SETTINGS join_use_nulls = 1
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INSERT INTO db_test.id_val VALUES (1,11)(2,12)(4,13)
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```
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``` text
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┌─id─┬─val─┐
│ 4 │ 13 │
│ 2 │ 12 │
│ 1 │ 11 │
└────┴─────┘
```
Query:
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``` sql
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SELECT joinGet(db_test.id_val, 'val', toUInt32(number)) from numbers(4) SETTINGS join_use_nulls = 1
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```
Result:
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``` text
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┌─joinGet(db_test.id_val, 'val', toUInt32(number))─┐
│ 0 │
│ 11 │
│ 12 │
│ 0 │
└──────────────────────────────────────────────────┘
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```
feat: implement catboost in library-bridge
This commit moves the catboost model evaluation out of the server
process into the library-bridge binary. This serves two goals: On the
one hand, crashes / memory corruptions of the catboost library no longer
affect the server. On the other hand, we can forbid loading dynamic
libraries in the server (catboost was the last consumer of this
functionality), thus improving security.
SQL syntax:
SELECT
catboostEvaluate('/path/to/model.bin', FEAT_1, ..., FEAT_N) > 0 AS prediction,
ACTION AS target
FROM amazon_train
LIMIT 10
Required configuration:
<catboost_lib_path>/path/to/libcatboostmodel.so</catboost_lib_path>
*** Implementation Details ***
The internal protocol between the server and the library-bridge is
simple:
- HTTP GET on path "/extdict_ping":
A ping, used during the handshake to check if the library-bridge runs.
- HTTP POST on path "extdict_request"
(1) Send a "catboost_GetTreeCount" request from the server to the
bridge, containing a library path (e.g /home/user/libcatboost.so) and
a model path (e.g. /home/user/model.bin). Rirst, this unloads the
catboost library handler associated to the model path (if it was
loaded), then loads the catboost library handler associated to the
model path, then executes GetTreeCount() on the library handler and
finally sends the result back to the server. Step (1) is called once
by the server from FunctionCatBoostEvaluate::getReturnTypeImpl(). The
library path handler is unloaded in the beginning because it contains
state which may no longer be valid if the user runs
catboost("/path/to/model.bin", ...) more than once and if "model.bin"
was updated in between.
(2) Send "catboost_Evaluate" from the server to the bridge, containing
the model path and the features to run the interference on. Step (2)
is called multiple times (once per chunk) by the server from function
FunctionCatBoostEvaluate::executeImpl(). The library handler for the
given model path is expected to be already loaded by Step (1).
Fixes #27870
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## catboostEvaluate(path_to_model, feature_1, feature_2, …, feature_n)
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:::note
This function is not available in ClickHouse Cloud.
:::
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Evaluate an external catboost model. [CatBoost ](https://catboost.ai ) is an open-source gradient boosting library developed by Yandex for machine learning.
feat: implement catboost in library-bridge
This commit moves the catboost model evaluation out of the server
process into the library-bridge binary. This serves two goals: On the
one hand, crashes / memory corruptions of the catboost library no longer
affect the server. On the other hand, we can forbid loading dynamic
libraries in the server (catboost was the last consumer of this
functionality), thus improving security.
SQL syntax:
SELECT
catboostEvaluate('/path/to/model.bin', FEAT_1, ..., FEAT_N) > 0 AS prediction,
ACTION AS target
FROM amazon_train
LIMIT 10
Required configuration:
<catboost_lib_path>/path/to/libcatboostmodel.so</catboost_lib_path>
*** Implementation Details ***
The internal protocol between the server and the library-bridge is
simple:
- HTTP GET on path "/extdict_ping":
A ping, used during the handshake to check if the library-bridge runs.
- HTTP POST on path "extdict_request"
(1) Send a "catboost_GetTreeCount" request from the server to the
bridge, containing a library path (e.g /home/user/libcatboost.so) and
a model path (e.g. /home/user/model.bin). Rirst, this unloads the
catboost library handler associated to the model path (if it was
loaded), then loads the catboost library handler associated to the
model path, then executes GetTreeCount() on the library handler and
finally sends the result back to the server. Step (1) is called once
by the server from FunctionCatBoostEvaluate::getReturnTypeImpl(). The
library path handler is unloaded in the beginning because it contains
state which may no longer be valid if the user runs
catboost("/path/to/model.bin", ...) more than once and if "model.bin"
was updated in between.
(2) Send "catboost_Evaluate" from the server to the bridge, containing
the model path and the features to run the interference on. Step (2)
is called multiple times (once per chunk) by the server from function
FunctionCatBoostEvaluate::executeImpl(). The library handler for the
given model path is expected to be already loaded by Step (1).
Fixes #27870
2022-08-05 07:53:06 +00:00
Accepts a path to a catboost model and model arguments (features). Returns Float64.
``` sql
SELECT feat1, ..., feat_n, catboostEvaluate('/path/to/model.bin', feat_1, ..., feat_n) AS prediction
FROM data_table
```
**Prerequisites**
1. Build the catboost evaluation library
Before evaluating catboost models, the `libcatboostmodel.<so|dylib>` library must be made available. See [CatBoost documentation ](https://catboost.ai/docs/concepts/c-plus-plus-api_dynamic-c-pluplus-wrapper.html ) how to compile it.
Next, specify the path to `libcatboostmodel.<so|dylib>` in the clickhouse configuration:
``` xml
< clickhouse >
...
< catboost_lib_path > /path/to/libcatboostmodel.so< / catboost_lib_path >
...
< / clickhouse >
```
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For security and isolation reasons, the model evaluation does not run in the server process but in the clickhouse-library-bridge process.
At the first execution of `catboostEvaluate()` , the server starts the library bridge process if it is not running already. Both processes
communicate using a HTTP interface. By default, port `9012` is used. A different port can be specified as follows - this is useful if port
`9012` is already assigned to a different service.
``` xml
< library_bridge >
< port > 9019< / port >
< / library_bridge >
```
feat: implement catboost in library-bridge
This commit moves the catboost model evaluation out of the server
process into the library-bridge binary. This serves two goals: On the
one hand, crashes / memory corruptions of the catboost library no longer
affect the server. On the other hand, we can forbid loading dynamic
libraries in the server (catboost was the last consumer of this
functionality), thus improving security.
SQL syntax:
SELECT
catboostEvaluate('/path/to/model.bin', FEAT_1, ..., FEAT_N) > 0 AS prediction,
ACTION AS target
FROM amazon_train
LIMIT 10
Required configuration:
<catboost_lib_path>/path/to/libcatboostmodel.so</catboost_lib_path>
*** Implementation Details ***
The internal protocol between the server and the library-bridge is
simple:
- HTTP GET on path "/extdict_ping":
A ping, used during the handshake to check if the library-bridge runs.
- HTTP POST on path "extdict_request"
(1) Send a "catboost_GetTreeCount" request from the server to the
bridge, containing a library path (e.g /home/user/libcatboost.so) and
a model path (e.g. /home/user/model.bin). Rirst, this unloads the
catboost library handler associated to the model path (if it was
loaded), then loads the catboost library handler associated to the
model path, then executes GetTreeCount() on the library handler and
finally sends the result back to the server. Step (1) is called once
by the server from FunctionCatBoostEvaluate::getReturnTypeImpl(). The
library path handler is unloaded in the beginning because it contains
state which may no longer be valid if the user runs
catboost("/path/to/model.bin", ...) more than once and if "model.bin"
was updated in between.
(2) Send "catboost_Evaluate" from the server to the bridge, containing
the model path and the features to run the interference on. Step (2)
is called multiple times (once per chunk) by the server from function
FunctionCatBoostEvaluate::executeImpl(). The library handler for the
given model path is expected to be already loaded by Step (1).
Fixes #27870
2022-08-05 07:53:06 +00:00
2. Train a catboost model using libcatboost
See [Training and applying models ](https://catboost.ai/docs/features/training.html#training ) for how to train catboost models from a training data set.
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## throwIf(x\[, message\[, error_code\]\])
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Throw an exception if argument `x` is true.
**Arguments**
- `x` - the condition to check.
- `message` - a constant string providing a custom error message. Optional.
- `error_code` - A constant integer providing a custom error code. Optional.
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To use the `error_code` argument, configuration parameter `allow_custom_error_code_in_throwif` must be enabled.
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**Example**
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``` sql
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SELECT throwIf(number = 3, 'Too many') FROM numbers(10);
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```
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Result:
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``` text
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↙ Progress: 0.00 rows, 0.00 B (0.00 rows/s., 0.00 B/s.) Received exception from server (version 19.14.1):
Code: 395. DB::Exception: Received from localhost:9000. DB::Exception: Too many.
```
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## identity
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Returns its argument. Intended for debugging and testing. Allows to cancel using index, and get the query performance of a full scan. When the query is analyzed for possible use of an index, the analyzer ignores everything in `identity` functions. Also disables constant folding.
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**Syntax**
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``` sql
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identity(x)
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```
**Example**
Query:
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``` sql
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SELECT identity(42);
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```
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Result:
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``` text
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┌─identity(42)─┐
│ 42 │
└──────────────┘
```
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## getSetting
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Returns the current value of a [custom setting ](../../operations/settings/index.md#custom_settings ).
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**Syntax**
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```sql
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getSetting('custom_setting');
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```
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**Parameter**
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- `custom_setting` — The setting name. [String ](../../sql-reference/data-types/string.md ).
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**Returned value**
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- The setting's current value.
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**Example**
```sql
SET custom_a = 123;
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SELECT getSetting('custom_a');
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```
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Result:
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```
123
```
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**See Also**
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- [Custom Settings ](../../operations/settings/index.md#custom_settings )
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## isDecimalOverflow
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Checks whether the [Decimal ](../../sql-reference/data-types/decimal.md ) value is outside its precision or outside the specified precision.
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**Syntax**
``` sql
isDecimalOverflow(d, [p])
```
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**Arguments**
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- `d` — value. [Decimal ](../../sql-reference/data-types/decimal.md ).
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- `p` — precision. Optional. If omitted, the initial precision of the first argument is used. This parameter can be helpful to migrate data from/to another database or file. [UInt8 ](../../sql-reference/data-types/int-uint.md#uint-ranges ).
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**Returned values**
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- `1` — Decimal value has more digits then allowed by its precision,
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- `0` — Decimal value satisfies the specified precision.
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**Example**
Query:
``` sql
SELECT isDecimalOverflow(toDecimal32(1000000000, 0), 9),
isDecimalOverflow(toDecimal32(1000000000, 0)),
isDecimalOverflow(toDecimal32(-1000000000, 0), 9),
isDecimalOverflow(toDecimal32(-1000000000, 0));
```
Result:
``` text
1 1 1 1
```
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## countDigits
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Returns number of decimal digits need to represent a value.
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**Syntax**
``` sql
countDigits(x)
```
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**Arguments**
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- `x` — [Int ](../../sql-reference/data-types/int-uint.md ) or [Decimal ](../../sql-reference/data-types/decimal.md ) value.
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**Returned value**
Number of digits.
Type: [UInt8 ](../../sql-reference/data-types/int-uint.md#uint-ranges ).
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:::note
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For `Decimal` values takes into account their scales: calculates result over underlying integer type which is `(value * scale)` . For example: `countDigits(42) = 2` , `countDigits(42.000) = 5` , `countDigits(0.04200) = 4` . I.e. you may check decimal overflow for `Decimal64` with `countDecimal(x) > 18` . It's a slow variant of [isDecimalOverflow ](#is-decimal-overflow ).
:::
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**Example**
Query:
``` sql
SELECT countDigits(toDecimal32(1, 9)), countDigits(toDecimal32(-1, 9)),
countDigits(toDecimal64(1, 18)), countDigits(toDecimal64(-1, 18)),
countDigits(toDecimal128(1, 38)), countDigits(toDecimal128(-1, 38));
```
Result:
``` text
10 10 19 19 39 39
```
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## errorCodeToName
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Returns the textual name of an error code.
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Type: [LowCardinality(String) ](../../sql-reference/data-types/lowcardinality.md ).
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**Syntax**
``` sql
errorCodeToName(1)
```
Result:
``` text
UNSUPPORTED_METHOD
```
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## tcpPort
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Returns [native interface ](../../interfaces/tcp.md ) TCP port number listened by this server.
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If executed in the context of a distributed table, this function generates a normal column with values relevant to each shard. Otherwise it produces a constant value.
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**Syntax**
``` sql
tcpPort()
```
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**Arguments**
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- None.
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**Returned value**
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- The TCP port number.
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Type: [UInt16 ](../../sql-reference/data-types/int-uint.md ).
**Example**
Query:
``` sql
SELECT tcpPort();
```
Result:
``` text
┌─tcpPort()─┐
│ 9000 │
└───────────┘
```
**See Also**
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- [tcp_port ](../../operations/server-configuration-parameters/settings.md#server_configuration_parameters-tcp_port )
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## currentProfiles
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Returns a list of the current [settings profiles ](../../guides/sre/user-management/index.md#settings-profiles-management ) for the current user.
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The command [SET PROFILE ](../../sql-reference/statements/set.md#query-set ) could be used to change the current setting profile. If the command `SET PROFILE` was not used the function returns the profiles specified at the current user's definition (see [CREATE USER ](../../sql-reference/statements/create/user.md#create-user-statement )).
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**Syntax**
``` sql
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currentProfiles()
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```
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**Returned value**
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- List of the current user settings profiles.
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Type: [Array ](../../sql-reference/data-types/array.md )([String](../../sql-reference/data-types/string.md)).
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## enabledProfiles
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Returns settings profiles, assigned to the current user both explicitly and implicitly. Explicitly assigned profiles are the same as returned by the [currentProfiles ](#current-profiles ) function. Implicitly assigned profiles include parent profiles of other assigned profiles, profiles assigned via granted roles, profiles assigned via their own settings, and the main default profile (see the `default_profile` section in the main server configuration file).
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**Syntax**
``` sql
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enabledProfiles()
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```
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**Returned value**
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- List of the enabled settings profiles.
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Type: [Array ](../../sql-reference/data-types/array.md )([String](../../sql-reference/data-types/string.md)).
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## defaultProfiles
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Returns all the profiles specified at the current user's definition (see [CREATE USER ](../../sql-reference/statements/create/user.md#create-user-statement ) statement).
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**Syntax**
``` sql
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defaultProfiles()
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```
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**Returned value**
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- List of the default settings profiles.
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Type: [Array ](../../sql-reference/data-types/array.md )([String](../../sql-reference/data-types/string.md)).
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## currentRoles
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Returns the roles assigned to the current user. The roles can be changed by the [SET ROLE ](../../sql-reference/statements/set-role.md#set-role-statement ) statement. If no `SET ROLE` statement was not, the function `currentRoles` returns the same as `defaultRoles` .
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**Syntax**
``` sql
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currentRoles()
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```
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**Returned value**
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- A list of the current roles for the current user.
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Type: [Array ](../../sql-reference/data-types/array.md )([String](../../sql-reference/data-types/string.md)).
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## enabledRoles
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Returns the names of the current roles and the roles, granted to some of the current roles.
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**Syntax**
``` sql
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enabledRoles()
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```
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**Returned value**
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- List of the enabled roles for the current user.
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Type: [Array ](../../sql-reference/data-types/array.md )([String](../../sql-reference/data-types/string.md)).
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## defaultRoles
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Returns the roles which are enabled by default for the current user when he logs in. Initially these are all roles granted to the current user (see [GRANT ](../../sql-reference/statements/grant.md#grant-select )), but that can be changed with the [SET DEFAULT ROLE ](../../sql-reference/statements/set-role.md#set-default-role-statement ) statement.
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**Syntax**
``` sql
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defaultRoles()
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```
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**Returned value**
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- List of the default roles for the current user.
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Type: [Array ](../../sql-reference/data-types/array.md )([String](../../sql-reference/data-types/string.md)).
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## getServerPort
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Returns the server port number. When the port is not used by the server, throws an exception.
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**Syntax**
``` sql
getServerPort(port_name)
```
**Arguments**
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- `port_name` — The name of the server port. [String ](../../sql-reference/data-types/string.md#string ). Possible values:
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- 'tcp_port'
- 'tcp_port_secure'
- 'http_port'
- 'https_port'
- 'interserver_http_port'
- 'interserver_https_port'
- 'mysql_port'
- 'postgresql_port'
- 'grpc_port'
- 'prometheus.port'
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**Returned value**
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- The number of the server port.
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Type: [UInt16 ](../../sql-reference/data-types/int-uint.md ).
**Example**
Query:
``` sql
SELECT getServerPort('tcp_port');
```
Result:
``` text
┌─getServerPort('tcp_port')─┐
│ 9000 │
└───────────────────────────┘
```
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## queryID {#other_functions-queryID}
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Returns the ID of the current query. Other parameters of a query can be extracted from the [system.query_log ](../../operations/system-tables/query_log.md ) table via `query_id` .
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In contrast to [initialQueryID ](#initial-query-id ) function, `queryID` can return different results on different shards (see the example).
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**Syntax**
``` sql
queryID()
```
**Returned value**
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- The ID of the current query.
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Type: [String ](../../sql-reference/data-types/string.md )
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**Example**
Query:
``` sql
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CREATE TABLE tmp (str String) ENGINE = Log;
INSERT INTO tmp (*) VALUES ('a');
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SELECT count(DISTINCT t) FROM (SELECT queryID() AS t FROM remote('127.0.0.{1..3}', currentDatabase(), 'tmp') GROUP BY queryID());
```
Result:
``` text
┌─count()─┐
│ 3 │
└─────────┘
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```
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## initialQueryID
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Returns the ID of the initial current query. Other parameters of a query can be extracted from the [system.query_log ](../../operations/system-tables/query_log.md ) table via `initial_query_id` .
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In contrast to [queryID ](#query-id ) function, `initialQueryID` returns the same results on different shards (see example).
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**Syntax**
``` sql
initialQueryID()
```
**Returned value**
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- The ID of the initial current query.
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Type: [String ](../../sql-reference/data-types/string.md )
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**Example**
Query:
``` sql
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CREATE TABLE tmp (str String) ENGINE = Log;
INSERT INTO tmp (*) VALUES ('a');
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SELECT count(DISTINCT t) FROM (SELECT initialQueryID() AS t FROM remote('127.0.0.{1..3}', currentDatabase(), 'tmp') GROUP BY queryID());
```
Result:
``` text
┌─count()─┐
│ 1 │
└─────────┘
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```
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## shardNum
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Returns the index of a shard which processes a part of data in a distributed query. Indices are started from `1` .
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If a query is not distributed then constant value `0` is returned.
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**Syntax**
``` sql
shardNum()
```
**Returned value**
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- Shard index or constant `0` .
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Type: [UInt32 ](../../sql-reference/data-types/int-uint.md ).
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**Example**
In the following example a configuration with two shards is used. The query is executed on the [system.one ](../../operations/system-tables/one.md ) table on every shard.
Query:
``` sql
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CREATE TABLE shard_num_example (dummy UInt8)
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ENGINE=Distributed(test_cluster_two_shards_localhost, system, one, dummy);
SELECT dummy, shardNum(), shardCount() FROM shard_num_example;
```
Result:
``` text
┌─dummy─┬─shardNum()─┬─shardCount()─┐
│ 0 │ 2 │ 2 │
│ 0 │ 1 │ 2 │
└───────┴────────────┴──────────────┘
```
**See Also**
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- [Distributed Table Engine ](../../engines/table-engines/special/distributed.md )
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## shardCount
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Returns the total number of shards for a distributed query.
If a query is not distributed then constant value `0` is returned.
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**Syntax**
``` sql
shardCount()
```
**Returned value**
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- Total number of shards or `0` .
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Type: [UInt32 ](../../sql-reference/data-types/int-uint.md ).
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**See Also**
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- [shardNum() ](#shard-num ) function example also contains `shardCount()` function call.
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## getOSKernelVersion
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Returns a string with the current OS kernel version.
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**Syntax**
``` sql
getOSKernelVersion()
```
**Arguments**
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- None.
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**Returned value**
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- The current OS kernel version.
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Type: [String ](../../sql-reference/data-types/string.md ).
**Example**
Query:
``` sql
SELECT getOSKernelVersion();
```
Result:
``` text
┌─getOSKernelVersion()────┐
│ Linux 4.15.0-55-generic │
└─────────────────────────┘
```
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## zookeeperSessionUptime
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Returns the uptime of the current ZooKeeper session in seconds.
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**Syntax**
``` sql
zookeeperSessionUptime()
```
**Arguments**
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- None.
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**Returned value**
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- Uptime of the current ZooKeeper session in seconds.
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Type: [UInt32 ](../../sql-reference/data-types/int-uint.md ).
**Example**
Query:
``` sql
SELECT zookeeperSessionUptime();
```
Result:
``` text
┌─zookeeperSessionUptime()─┐
│ 286 │
└──────────────────────────┘
```
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## generateRandomStructure
Generates random table structure in a format `column1_name column1_type, column2_name column2_type, ...` .
**Syntax**
``` sql
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generateRandomStructure([number_of_columns, seed])
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```
**Arguments**
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- `number_of_columns` — The desired number of columns in the result table structure. If set to 0 or `Null` , the number of columns will be random from 1 to 128. Default value: `Null` .
- `seed` - Random seed to produce stable results. If seed is not specified or set to `Null` , it is randomly generated.
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All arguments must be constant.
**Returned value**
- Randomly generated table structure.
Type: [String ](../../sql-reference/data-types/string.md ).
**Examples**
Query:
``` sql
SELECT generateRandomStructure()
```
Result:
``` text
┌─generateRandomStructure()─────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────┐
│ c1 Decimal32(5), c2 Date, c3 Tuple(LowCardinality(String), Int128, UInt64, UInt16, UInt8, IPv6), c4 Array(UInt128), c5 UInt32, c6 IPv4, c7 Decimal256(64), c8 Decimal128(3), c9 UInt256, c10 UInt64, c11 DateTime │
└───────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────┘
```
Query:
``` sql
SELECT generateRandomStructure(1)
```
Result:
``` text
┌─generateRandomStructure(1)─┐
│ c1 Map(UInt256, UInt16) │
└────────────────────────────┘
```
Query:
``` sql
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SELECT generateRandomStructure(NULL, 33)
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```
Result:
``` text
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┌─generateRandomStructure(NULL, 33)─────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────┐
│ c1 DateTime, c2 Enum8('c2V0' = 0, 'c2V1' = 1, 'c2V2' = 2, 'c2V3' = 3), c3 LowCardinality(Nullable(FixedString(30))), c4 Int16, c5 Enum8('c5V0' = 0, 'c5V1' = 1, 'c5V2' = 2, 'c5V3' = 3), c6 Nullable(UInt8), c7 String, c8 Nested(e1 IPv4, e2 UInt8, e3 UInt16, e4 UInt16, e5 Int32, e6 Map(Date, Decimal256(70))) │
└────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────┘
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```
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**Note**: the maximum nesting depth of complex types (Array, Tuple, Map, Nested) is limited to 16.
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This function can be used together with [generateRandom ](../../sql-reference/table-functions/generate.md ) to generate completely random tables.
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## structureToCapnProtoSchema {#structure_to_capn_proto_schema}
Converts ClickHouse table structure to CapnProto schema.
**Syntax**
``` sql
structureToCapnProtoSchema(structure)
```
**Arguments**
- `structure` — Table structure in a format `column1_name column1_type, column2_name column2_type, ...` .
- `root_struct_name` — Name for root struct in CapnProto schema. Default value - `Message` ;
**Returned value**
- CapnProto schema
Type: [String ](../../sql-reference/data-types/string.md ).
**Examples**
Query:
``` sql
SELECT structureToCapnProtoSchema('column1 String, column2 UInt32, column3 Array(String)') FORMAT RawBLOB
```
Result:
``` text
@0xf96402dd754d0eb7 ;
struct Message
{
column1 @0 : Data;
column2 @1 : UInt32;
column3 @2 : List(Data);
}
```
Query:
``` sql
SELECT structureToCapnProtoSchema('column1 Nullable(String), column2 Tuple(element1 UInt32, element2 Array(String)), column3 Map(String, String)') FORMAT RawBLOB
```
Result:
``` text
@0xd1c8320fecad2b7f ;
struct Message
{
struct Column1
{
union
{
value @0 : Data;
null @1 : Void;
}
}
column1 @0 : Column1;
struct Column2
{
element1 @0 : UInt32;
element2 @1 : List(Data);
}
column2 @1 : Column2;
struct Column3
{
struct Entry
{
key @0 : Data;
value @1 : Data;
}
entries @0 : List(Entry);
}
column3 @2 : Column3;
}
```
Query:
``` sql
SELECT structureToCapnProtoSchema('column1 String, column2 UInt32', 'Root') FORMAT RawBLOB
```
Result:
``` text
@0x96ab2d4ab133c6e1 ;
struct Root
{
column1 @0 : Data;
column2 @1 : UInt32;
}
```
## structureToProtobufSchema {#structure_to_protobuf_schema}
Converts ClickHouse table structure to Protobuf schema.
**Syntax**
``` sql
structureToProtobufSchema(structure)
```
**Arguments**
- `structure` — Table structure in a format `column1_name column1_type, column2_name column2_type, ...` .
- `root_message_name` — Name for root message in Protobuf schema. Default value - `Message` ;
**Returned value**
- Protobuf schema
Type: [String ](../../sql-reference/data-types/string.md ).
**Examples**
Query:
``` sql
SELECT structureToProtobufSchema('column1 String, column2 UInt32, column3 Array(String)') FORMAT RawBLOB
```
Result:
``` text
syntax = "proto3";
message Message
{
bytes column1 = 1;
uint32 column2 = 2;
repeated bytes column3 = 3;
}
```
Query:
``` sql
SELECT structureToProtobufSchema('column1 Nullable(String), column2 Tuple(element1 UInt32, element2 Array(String)), column3 Map(String, String)') FORMAT RawBLOB
```
Result:
``` text
syntax = "proto3";
message Message
{
bytes column1 = 1;
message Column2
{
uint32 element1 = 1;
repeated bytes element2 = 2;
}
Column2 column2 = 2;
map< string , bytes > column3 = 3;
}
```
Query:
``` sql
SELECT structureToProtobufSchema('column1 String, column2 UInt32', 'Root') FORMAT RawBLOB
```
Result:
``` text
syntax = "proto3";
message Root
{
bytes column1 = 1;
uint32 column2 = 2;
}
```